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Differential evolution algorithm for nonlinear inversion of high-frequency Rayleigh wave dispersion curves

机译:高频瑞利波频散曲线非线性反演的差分演化算法

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In recent years, Rayleigh waves are gaining popularity to obtain near-surface shear (S)-wave velocity profiles. However, inversion of Rayleigh wave dispersion curves is challenging for most local-search methods due to its high nonlinearity and to its multimodality. In this study, we proposed and tested a newRayleighwave dispersion curve inversion scheme based on differential evolution (DE) algorithm. DE is a novel stochastic search approach that possesses several attractive advantages: (1) Capable of handling non-differentiable, non-linear and multimodal objective functions because of its stochastic search strategy; (2) Parallelizability to copewith computation intensive objective functions without being time consuming by using a vector population where the stochastic perturbation of the population vectors can be done independently; (3) Ease of use, i.e. few control variables to steer the minimization/maximization by DE's self-organizing scheme; and (4) Good convergence properties. The proposed inverse procedurewas applied to nonlinear inversion of fundamental-mode Rayleighwave dispersion curves for near-surface S-wave velocity profiles. To evaluate calculation efficiency and stability of DE, we firstly inverted four noise-free and four noisy synthetic data sets. Secondly, we investigated effects of the number of layers on DE algorithmand made an uncertainty appraisal analysis by DE algorithm. Thirdly, we made a comparative analysis with genetic algorithms (GA) by a synthetic data set to further investigate the performance of the proposed inverse procedure. Finally, we inverted a real-world example from a waste disposal site in NE Italy to examine the applicability of DE on Rayleigh wave dispersion curves. Furthermore, we compared the performance of the proposed approach to that of GA to further evaluate scores of the inverse procedure described here. Results from both synthetic and actual field data demonstrate that differential evolution algorithm applied to nonlinear inversion of high-frequency surface wave data should be considered good not only in terms of the accuracy but also in terms of the convergence speed.
机译:近年来,瑞利波越来越受欢迎,以获取近地表剪切(S)波速度剖面。但是,由于瑞利波频散曲线的高非线性和多模态性,因此对于大多数局部搜索方法而言,其瑞利波频散曲线的反演面临挑战。在这项研究中,我们提出并测试了一种基于微分进化(DE)算法的新瑞利波频散曲线反演方案。 DE是一种新颖的随机搜索方法,具有多种吸引人的优点:(1)由于其随机搜索策略,因此能够处理不可微,非线性和多峰目标函数。 (2)通过使用向量种群可并行处理计算密集型目标函数而不会浪费时间,在这种情况下种群向量的随机扰动可以独立完成; (3)易于使用,即很少有控制变量来控制DE的自组织方案的最小化/最大化; (4)良好的收敛性。将所提出的逆过程应用于近地S波速度剖面的基模瑞利波频散曲线的非线性反演。为了评估DE的计算效率和稳定性,我们首先反转了四个无噪声和四个噪声的合成数据集。其次,研究了层数对DE算法的影响,并通过DE算法进行了不确定性评价分析。第三,我们通过综合数据集与遗传算法(GA)进行了比较分析,以进一步研究所提出的逆过程的性能。最后,我们从意大利东北部的一个废物处理场倒了一个真实的例子,以研究DE在瑞利波频散曲线上的适用性。此外,我们将提出的方法与GA的性能进行了比较,以进一步评估此处描述的逆过程的得分。来自合成和实际现场数据的结果表明,应用于高频表面波数据非线性反演的差分演化算法不仅在准确性方面而且在收敛速度方面都应被认为是好的。

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